Although evidence theory has been applied in sensor data fusion, it will have unreasonable results when handling highly conflicting sensor reports. To address the issue, an improved fusing method with evidence distance and belief entropy is proposed. Generally, the goal is to obtain the appropriate weights assigning to different reports. Specifically, the distribution difference between two sensor reports is measured by belief entropy. The diversity degree is presented by the combination of evidence distance and the distribution difference. Then, the weight of each sensor report is determined based on the proposed diversity degree. Finally, we can use Dempster combination rule to make the decision. A real application in fault diagnosis and an example show the efficiency of the proposed method. Compared with the existing methods, the method not only has a better performance of convergence, but also less uncertainty.
CITATION STYLE
Dong, Y., Zhang, J., Li, Z., Hu, Y., & Deng, Y. (2019). Combination of evidential sensor reports with distance function and belief entropy in fault diagnosis. International Journal of Computers, Communications and Control, 14(3), 329ā343. https://doi.org/10.15837/ijccc.2019.3.3589
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